Integrating Dynamical Systems Learning with Foundational Models: A Meta-Evolutionary AI Framework for Clinical Trials
Joseph Geraci, Bessi Qorri, Christian Cumbaa, Mike Tsay, Paul Leonczyk, Luca Pani

TL;DR
This paper introduces NetraAI, a dynamical systems framework combined with large language models to identify predictive patient subgroups in clinical trials, enhancing interpretability and discovery efficiency.
Contribution
It presents a novel meta-evolutionary AI architecture integrating dynamical systems, information geometry, and LLMs for clinical trial analysis, enabling self-improving, explainable subgroup discovery.
Findings
Uncovered high-effect-size subpopulations in clinical datasets.
Transformed weak classifiers into near-perfect models with few features.
Demonstrated interpretability and stability in small sample clinical data.
Abstract
Artificial intelligence (AI) has evolved into an ecosystem of specialized "species," each with unique strengths. We analyze two: DeepSeek-V3, a 671-billion-parameter Mixture of Experts large language model (LLM) exemplifying scale-driven generality, and NetraAI, a dynamical system-based framework engineered for stability and interpretability on small clinical trial datasets. We formalize NetraAI's foundations, combining contraction mappings, information geometry, and evolutionary algorithms to identify predictive patient cohorts. Features are embedded in a metric space and iteratively contracted toward stable attractors that define latent subgroups. A pseudo-temporal embedding and long-range memory enable exploration of higher-order feature interactions, while an internal evolutionary loop selects compact, explainable 2-4-variable bundles ("Personas"). To guide discovery, we introduce…
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Taxonomy
TopicsMachine Learning in Healthcare · Mental Health via Writing · Explainable Artificial Intelligence (XAI)
